Texila International Journal of Public Health Special Edition Apr 2019
Prevalence and associated Factors of Malnutrition, among Children 6-59 months old in Pastoral communities of Aweil Centre, South Sudan
Article Ratib Dricile¹,² 1Texila American University, George Town Guyana
2Health and Development for All (HADA), Kampala Uganda E-mail: [email protected]
Abstract
Malnutrition is one of the leading causes of morbidity and mortality among children globally has been
linked to 60% of the 10.9million deaths annually of children under five. The median stunting prevalence
in WHO African region is 31.3%.
Aweil Center of South Sudan has consistently high malnutrition rates despite running nutrition projects
with relative stability. Results from nutrition survey in November 2013 indicated a severe acute
malnutrition (SAM) prevalence rate of 6.3% (95% CI, 4.5-8.9) and a global acute malnutrition (GAM)
rate of 22.4% (95% CI, 17.8-27.7). Both prevalence rates were above the WHO thresholds of 15% and
2% respectively.
A cross-sectional study done with two-stage cluster sampling method showed that generally children 6-
59 months in Aweil Center have poor nutritional status with GAM (<-2 z-score and/or edema) of 23.2%
(95% CI, 19.0-27.9) and SAM (% < -3SD) of 7% (95% CI, 4.9%-9.9%). However, stunting based on
height/length-for-age z-scores was 8.7% (95% CI, 6.5-11.6), which was within the acceptable new
WHO’s threshold regarded as low probably due to genetic factors for tallness for Dinka tribe.
The study revealed high burden of infectious diseases at 94.5% with p-value 0.00022 (95%C. I,
0.1667-0.291). Poor feeding and family planning practices; poor access roads to markets contribute to
childhood malnutrition.
Multifaceted approach is needed to root out the chronic malnutrition from Aweil center shift from food
Aid to support of food production, scale up of primary health care and iCCM interventions and
community awareness on feeding practices among others.
Keywords: Prevalence, Associated-factors, Malnutrition, Children 6-59 months, Infectious diseases,
Genetics.
Introduction
Malnutrition is one of the most common causes of morbidity and mortality among children globally
(WHO1999). Malnutrition has been linked to 60% of the 10.9million deaths annually of children less than
five years old. Not only that; 50-70% of the burden of diarrhea, malaria, and respiratory infections among
others in childhood are attributed to undernutrition with underlying poverty (WHO2003). Infants born
with low birth weight (LBW) are 1.74 times more likely to be stunted (95% CI, 1.38–2.19) than those
born with normal weight (Aryastami et al 2017).
Undernutrition is still persistent in the WHO African region with major implications for health care.
Sadly Twenty five of the WHO African region’s 47 countries have high (>30%) or very high (>40%)
rates of stunting (WHO 2017). Within Africa, Sub-Saharan Africa has one of the highest rates of under-
five malnutrition with stunting as high as 57.7% in the East African Country of Burundi, 43.9% in Niger
of West Africa and 39.9% in Chad of Central Africa (Akombi et al, 2017).
It has been noted that stunted mothers of reproductive age are more likely to have stunted children.
This is because the genes for stunted growth are passed on to the next generation in their children
(Thokozani 2014).
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Data collected from 45 Countries between 2007 and 2015 showed median wasting of 6.3% and ranged
from 2% in Swaziland to 22.7% in South Sudan. 17 Countries had wasting level less than 5% (acceptable
prevalence), 19 countries had wasting prevalence of 5-9% (poor prevalence); 3 Countries exceeded the
critical public health emergency threshold. These included South Sudan at 22.7%, Niger 18.7% and
Eritrea 15.3% (WHO 2017).
Aweil Centre of South Sudan is one of the Counties with Chronic and acute Malnutrition especially
among children under the age of 5 years. Results from a nutrition survey conducted in November 2013
indicated a severe acute malnutrition (SAM) prevalence rate of 6.3% (95% CI, 4.5-8.9) and a global acute
malnutrition (GAM) rate of 22.4% (95% CI, 17.8-27.7). Both prevalence rates were above the WHO
global acute malnutrition and severe acute malnutrition rates of 15% and 2% respectively. The high
malnutrition rates continue to exist among the preschool children in South Sudan after surviving the 6-59
months of age (Harvey and Rogers 2007).
The government, UN agencies and implementing partners have a number of nutrition and health
projects running in the County, but the malnutrition rates have remained high despite the relative stability
in this region compared to the neighboring states of lakes, Western Bahr el Ghazal and Unity states that
are at the heart of the conflict in South Sudan. There was need to find out the current prevalence of
malnutrition and the associated actors of the persistent under nutrition among the children 6-59 months so
as to address the root causes of the malnutrition in this pastoral communities. There was therefore a need
to establish the Current malnutrition rates and the associated factors as to give recommendations to
address the underlying causes of malnutrition in Aweil Centre County.
Timely and adequate feeding of children 6-59 months with foods rich in proteins, carbohydrates, oils
and micronutrients increases their chances of survival, supports growth and development especially in the
first 2 years of life. In addition, improving maternal nutrition, especially before, during and immediately
after pregnancy reduces stunting and acute malnutrition (United Nations 2015).
Neonates need to be breastfed in the first 1hour of their life, creating early bonding with mother,
provision of colostrum which is rich in nutrients and supports the immune system for the bay and keeps
baby warm-protecting from hypothermia which can be life threatening.
Infants should be exclusively breastfed for the first 6months of their life. Adequate feeding from 6
months to 59 months and above prevents stunting and reduces the risk of infectious diseases like
pneumonia and infective diarrhea among others, hence reducing morbidity and mortality among the
children less than five years of life (UNICEF 2015).
Due to the collapsed health systems and poor health infrastructure in South Sudan following the years
of conflict, community management of acute malnutrition (CMAM) was introduced in the year 2000.
Community mobilization is key for the success of CMAM program because this is where the children
who are malnourished are screened and referred by community-based distributer (CBDs) volunteers either
to OTP, SFP at the PHC facilities or stabilization Centre at the state capital in Aweil (Keane et al 2013).
Research methodology
Study area
The study was conducted in Aweil center County, one of the five Counties of the former Northern Bahr
el Ghazal state of South Sudan.
Aweil town is the capital of former Bahr el Ghazal state and now capital of Aweil state, located
800KM from Juba, the capital of Juba and lies on the North West part of the Country at coordinates of 8°
46' 02.00"N, 27° 23' 59.00"E (Latitude: 8.7671; Longitude: 27.3998). Its location is near the international
border with the Republic of Sudan and the Abyei region to the north, bordering Wau to the South, Lol
state of former Western Bahr el Ghazal to the West and Aweil East County to the east. Aweil Center
County has 7 Payams which are administrative units. These include Achanna, Aroyo, Awada, Awulic,
Bar Mayen, Chel South and Nya lath. The Payams are sub- divided into 29 Bomas, the smallest
administrative unit in the republic of South Sudan.
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Texila International Journal of Public Health Special Edition Apr 2019
The topography of Aweil is flat with savannah grassland devoid of most of its trees for firewood,
charcoal and shelter, hence making this Country prone to flooding every year at the peak of rainy season
from August to October. The soils are silty making them retain flood water for weeks and sometimes even
months blocking transport from some villages to the town center which lies close to the confluence of Lol
and Pongo Rivers. There are two weather conditions all in the extreme: prolonged dry season from
November to May and flooding from August to October.
Unlike the neighboring counties that are predominantly one tribe, Aweil has Luo and Dinka tribes
sandwiched with other tribes and nationalities socially living in harmony. This is the most peaceful state
of the ten states in South Sudan. Different tribes living side by side and different faiths pray side by side.
The main economic activities are cattle keeping since most of the villagers are pastoralist who move with
cattle to look for pasture during dry season and mover to high grounds near the town during the floods at
peak of the rain. A good proportion of the population does mixed farming with growing of crops and
rearing of smaller number of animals. Others along the Lol and Pongo rivers do some fishing.
Foreigners are mostly in the town and are involved in cross border trade with neighboring Countries like
Uganda, DRC, Kenya and Sudan. Despite these economic activities, poverty level is the worst in the
country at 76% (fig2).
The former Northern Bahr el Ghazal had a population of 720,898 (55,398 urban and 665,500 rural) and
an area of 30,543 square kilo meters with population density of 24/sq. km. Aweil Center has lion’s share
of the land of the 5 Counties at 11,17 sq. km, but the smallest population 41,827 (22,199M 19,628F) and
5919 (16%) children 6-59 months with population density of only 4 / sq. km (GOSS and SSCCSE 2010).
South Sudan has one of the worst health indicators with infant mortality rate at 79 deaths per 1000 live
births, but the highest infant mortality rates are in the former Northern Bah El Ghazal state at 120 deaths
per 1,000 live births and also under five mortality rate at 152 deaths per 1,000 live births.
Figure 2. Poverty headcount in south sudan. source: poverty in southern sudan: national baseline household
survey (NBHS), 2010
Theoretical framework
The high prevalence of pathogens especially bacteria, and parasites in developing countries of Sub-
Saharan Africa contributes greatly to the malnutrition and vice versa contributing to 300,000 deaths per
year which directly related to severity of malnutrition and poverty which is the main underlying cause of
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malnutrition (Müller and Krawinkel, 2005). Figure3 below illustrates the theoretical framework of the
causes of malnutrition in Aweil, 2018.
Figure 3. Theoretical framework for causes of malnutrition in Aweil 2018
Research design
A community based cross-sectional study design was applied for children and their care takers. A two-
stage cluster sampling method was adopted to select the villages and the households. A total of 39
clusters (villages) were selected, 9 of which were reserves. One child (6-59 months) in the selected
household was randomly included in the anthropometric assessment and the care taker interviewed using
interviewer administered questionnaire to get more information on the associated factors of malnutrition.
Using village lists provided by the County health department, village level enumerators were trained to do
systematic random sampling to select 13 households per cluster who were then interviewed. The
30cluster * 13household per cluster survey design enabled the calculation of 95% confidence interval
point estimates to give 390 households as the minimum number of households, children and their care
takers.1
An unmatched case-control study of children 6-59 months malnourished and well-nourished was done.
The malnourished children were the cases of moderate acute malnutrition (MAM - a weight for height Z
score of ≥ −3SD to < − 2 SD) or severe acute malnutrition (SAM-a weight for height Z score of < − 3
Standard deviations with or without bilateral pitting edema). The well-nourished children were controls
and compared with the cases in a 3X3 design using various parameters of age, monthly family income,
age of sibling that child follows, mother’s education level among others.
Research Variables:
The research variables are grouped into three: anthropometrics and health for the children 6-59 months,
infant and young child feeding practices (IYCF) and food security. To ensure that the respondents
understood the message, the structured questionnaire was translated to Dinka language and back to
English to confirm the translation.
Anthropometric measurements included weight, and height or length and the dependent variables.
Vitamin A supplementation in the last six months, Measles vaccination for children 9 months and above,
any history of illness two weeks prior to the day of administering the questionnaire, for example fever,
cough, diarrhea, skin infections, and eye infections.
The facility in which sick child is taken for treatment like primary health care unit (PHCU), primary
1https://www.who.int/immunization/monitoring_surveillance/Vaccination_coverage_cluster_survey_with_annexes.p
df
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Texila International Journal of Public Health Special Edition Apr 2019
health care Centre (PHCC), hospital, outreach clinic, private physician, village health worker,
Community-based drug distributor (CBD), drug shop, traditional practitioner, relative or a friend.
Variables related to malaria control included the number of long-lasting insecticide treated nets
(LLITNs) and whether or not the child 6-59 months is sleeping under LLITNs. Also related to malaria,
diarrhea cough is accessibility to a CBD.
The variables under IYCF included age of the child in months, whether the child has ever been breast
fed, if yes how long after birth it took before the child was first put in to breast feed; whether immediately
(<1hr), 1-24hrs, 24-48hrs, or after 48hours. At what age other foods were introduced to the child and what
foods were they?
Food security variables
Various food groups consumed in the past 24 hours before the day of administering questionnaire; for
example breast milk, milk and other dairy products like yoghurt, fruits, green leave vegetables, sugar,
honey, oil, fats or butter pulses like beans, lentils, groundnuts, sesame or peas; cereals like maize,
sorghum, millet, rice, pasta, bread, and tubers; for example cassava, potatoes, and sweet potatoes among
others. The individual dietary diversity (IDDS) of the children in the community was calculated using the
formula:
IDDS = Number of children (6‐59) months who received food from at least four (4) food groups
in 24 hrs.
X 100
Number of children (6‐59 months) enrolled in the study
At household level, the number of times the various food groups were consumed in the past 7 days
prior to the day of study was also recorded just like for the 24 hour period (FAO 2010).
Sample size, design effect and precision
The design effect and precision were calculated using the formula:
±2 standard errors (s) = √ [p (1-p) D/n]
Note: s = √ [p (1-p) D/n] is an extension of the simpler formula binomial formula √ [p (1-p) /n] when
the data is assumed to come from a simple random sample.
√D is a measure of the increase in the standard error of the estimate due to the sampling procedure
used.
(Bennett S et al 1991)
Where D is design effect = 1+ (b-1) roh
And roh= rate of homogeneity. 0.2 at 95% or 0.1 at 50%
b= average number of responses per cluster
n= total number of responses in the study
p= estimated proportion = 0.5 - not known
No. of clusters necessary(c) C=p (1-p) D/S²b (Bennett S et al 1991)
Sample size, n = ((zɑ/2)²)/s² [p (1-p)]*D
Where zɑ/2 = Z-score equivalent to1.96
S = standard error=0.05
P= proportion= 0.5
n= (1.96²)/ (0.05²) [0.5(1-0.5)*1.5
n= 576.24
Expected response rate 95%
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n= 576.24*0.95= 547 households and children 6-59 months as well as care takers (mothers)
Sampling technique
Selection of the sample was performed by sampling with probability proportional to size (PPS). This
was carried out by making a table of cumulative list of village populations and selecting a systematic
sample from a random start. The total population of the clusters (villages) was divided by the estimated
number of villages to be selected to obtain the sampling interval (SI). Random number was chosen
between 1 and the SI then fitted into position to identify the first village in the sample frame. Then the SI
was added to the random number to get the second village and the SI was added to cumulative number to
get the subsequent villages. Constant number of households was selected from each selected village so
that each household in the population had the same probability of being selected in the sample i.e. self-
weighting sampling procedure.
Inclusion/exclusion criteria
Children from the selected clusters and homes from Aweil center County 6–59 months of age were
included in the study. Only one child 6-59 months was selected per household to avoid double selection.
Additional children in the same household were excluded. Children were not eligible to participate if they
were not accompanied by responsible caretaker to get informed consent.
Research equipment and materials
The standardization test equipment and materials included 12 new MUAC tapes, wooden height boards
with calibration, twelve (12) electronic weighing scales with two extra sets of batteries, one 50-pen box,
standardization test forms and 16 clipboards (one per participant).
Data analysis
Data from the field was checked for errors before entry was made in the nutrition survey database in
the world health organization (WHO) anthro software version 3.2.2.1. The anthropometric data and that
for nutrition factors were then exported to SPSS for analysis. Bivariate analysis and multivariate
regression analysis were then done to get prevalent of malnutrition, and the associated factors.
Ethical considerations
Ethical clearance was sought from the directorate of policy, planning and budgeting in the Ministry of
health, republic of South Sudan. Bonafide certificate was provided by the Texila American University to
introduce me officially to the authorities and confirming that I’m a student.
The state ministry of health and the County health departments were informed of the planned nutrition
study and protocol shared with them to familiarize themselves with the purpose and the research process.
Results
Demography
A total of 517 children and their care takers were reached. 217(42%) of the children were males and
297 (58%) were females. Out of 517 children 514 care takers were able to give all the needed information
which was 99.42% response rate. 55(10.7%) of the children were infants and the highest number of
children in a single age bracket was 128 (25%) within 12-23 months of age. The rest of the children were
between 24 and 59 months of age with more or less uniform distribution (fig6)
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Texila International Journal of Public Health Special Edition Apr 2019
Figure 6. Population pyramid for children 6-59 months in Aweil center Prevalence of malnutrition
The results showed that generally children 6-59 months in Aweil Center have poor nutritional status
compared to the WHO standard. This has been reflected in Fig7 below with the curve of z-score in red
shifted to the left of the WHO standard in green on the right with the prevalence of global acute
malnutrition -GAM (<-2 z-score and/or edema) [119] 23.2%. Prevalence of severe acute malnutrition
(SAM) (% < -3SD) was 7% in Aweil which was also higher than the WHO threshold of 2% (95% CI, 4.9-
9.9) (table3).
Prevalence of underweight based on weight-for-age z-scores was 16.6% (95% CI, 13.8- 19.7). Boys
were more likely to be underweight compared to girls with prevalence 19.8% (95% CI, 15.6-24.8) and
14.1% (95%CI, 10.4-18.9) respectively (table4).
Prevalence of stunting based on height/length-for-age z-scores was 8.7% (95% CI, 6.5-11.6), which is
was also within the acceptable new WHO’s threshold regarded as low. However, children between 12-23
months had the highest level of stunting at 11.7% (95% C.I. 6.4-26.7) (Table5).
-20% -15% -10% -5% 0% 5% 10% 15%
(6-11)
(12-23)
(24-35)
(36-47)
(48-60)
% of population category by gender
Age
gro
up
s(m
on
ths)
Population pyramid for children 6-59 months old in Aweil Center May
2018
Female
Male
20 15 10 5 0 5 10 15
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Figure 7. General nutritional status of the children in Aweil compared with WHO standard
Set 1- General results
Table 6. Prevalence of malnutrition by age group for gender combined children 6-59 months
Age groups N Weight-for-length/height (%)
% < -3SD (95% CI) % < -2SD (95% CI)
Total: 514 7 (4.9- 9.9) 23.2 (19-27.9)
(6-11) 55 1.9 (0.3-12.8) 25 (15.7-37.4)
(12-23) 128 5.5 (2.6-11.3) 17.2 (11.1-25.6)
(24-35) 108 5.6 (2.7-11.1) 21.3 (13-32.9)
(36-47) 107 10.3 (5-20) 29.9 (19-43.7)
(48-60) 107 9.3 (5.2-16.2) 24.3 (15.4-36.1)
Table 7. Prevalence of acute malnutrition based on W/H z-scores and edema disaggregated by gender
Variables All N=514 Boys n=217 Girls=297
Prevalence of global acute
malnutrition -GAM (<-2 z-score
and/edema)
[119] 23.2%
(95% CI, 19.0-27.9)
[55]25.3%
(95% CI, 19.3-
32.5)
[64]21.5% (95% CI,
16.1-28.2)
Prevalence of moderate
malnutrition (<-2 z-score and
>=-3 z-score, no edema)
[83] 16.2%
(95% CI, 14.1-18.0)
[37]17% (95% CI,
14.3-19.0)
[46]15.4% (95% CI,
12.5-18.3)
Prevalence of severe
malnutrition (<-3 z-score
and/edema)
[36] 7%
(95% CI, 4.9-9.9)
[18]8.3
(95% CI, 5-13.5)
[18]6.1% (95% CI,
3.6-9.9)
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Texila International Journal of Public Health Special Edition Apr 2019
Table 8. Comparison of prevalence of underweight based on weight-for-age z-scores for male and female
Under Weight Weight-for-age (%)
Category N % < -3SD (95% CI) % < -2SD (95% CI) SD
Total: 507 4.1 (2.8-6.2) 16.6 (13.8-19.7) 1.07
Male 217 2.8 (1.3-5.7) 19.8 (15.6-24.8) 0.98
Female 290 5.2 (3-8.8) 14.1 (10.4-18.9) 1.12
Table 9. Prevalence of stunting based on height/length-for-age z-scores
Age groups N Length/height-for-age (%)
% < -3SD (95% CI) % < -2SD (95% CI)
Total: 505 2.4 (1.4%, 4.1%) 8.7 (6.5%, 11.6%)
(6-11) 55 0 (-, -) 5.8 (2%, 15.3%)
(12-23) 128 2.3 (0.8%, 6.8%) 11.7 (6.9%, 19.1%)
(24-35) 108 5.6 (2.6%, 11.7%) 12 (6.2%, 22%)
(36-47) 106 0.9 (0.1%, 6.9%) 4.7 (1.9%, 11.2%)
(48-60) 108 1.9 (0.5%, 7.1%) 7.4 (3.6%, 14.5%)
Factors associated with malnutrition
Bivariate analysis
The study results show that vitamin A supplementation for children 6-59 months old was 273(53%), p-
value 0.0006 and odds ratio (OR) 0.47 (95% C.I. 0.31-0.72) which was significant protective measure
against malnutrition (Fig9 and Table 16: section 1).
Measles vaccination with evidence from a vaccination card 284 (55%) p-value 0.005 and OR 0.54
(95% C.I. 0.36-0.82) which was significant and contributes to reduction in the prevalence of malnutrition
273 (53%) of the children were reported to be sleeping under long lasting insecticide treated mosquito
nets. P-value was 0.01 and OR 0.57 (95% C.I. 0.37-0.86) which is statistically significant and protective.
(table16: section 2 and 7).
Within 30 days prior to the study, 361(0%) families enrolled in the study had lacked food or money for
food for at least once. Malnutrition rate in these families was one of the highest with 101 children under
five (28%) malnourished. P-value was 0.0001 and OR 2.96 (95% C.I. 1.72-5.09) which was significant
and scarcity of resources increased the risk of malnutrition.
Table 16. Bivariate analysis of various factors of malnutrition with their p-values, Odds ratio and 95% confidence
intervals
S FACTOR NO % P-V OR LIMITS
1 Vitamin A
supplementation
No. % Malnutr
ition
No
malnutriti
on
P-
value
OR Lower
95%
Upper
95%
Yes 273 53 46 227 0.0006 0.47 0.31 0.72
2 Children sleeping
under LLITN
No. % malnutr
ition
No
malnutriti
on
P-
value
OR Lower
95%
Upper
95%
Yes 273 52.9 50 223 0.01 0.57 0.37 0.86
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3 A day of lack of
food/money for
food in the last
30days prior to
study
No. % malnutr
ition
No
malnutriti
on
P-
value
OR Lower
95%
Upper
95%
Yes 361 70
%
101 260 0.0001 2.96 1.72 5.09
4 Agricultural
production
No. % malnutr
ition
No
malnutriti
on
P-
value
OR Lower
95%
Upper
95%
Yes 282 54.7 49 233 0.001 0.49 0.32 0.75
5 Still has Cereals
of last harvest
No. % malnutr
ition
No
malnutriti
on
P-
value
OR Lower
95%
Upper
95%
Yes 181 35
%
30 151 0.014 0.55 0.35 0.87
6 CBD within Easy
reach
No. % malnutr
ition
No
malnutriti
on
P-
value
OR Lower
95%
Upper
95%
Yes 259 50.2 49 210 0.032 0.62 0.41 0.94
7 Measles
Vaccination
No. % malnutr
ition
No
malnutriti
on
P-
value
OR Lower
95%
Upper
95%
Not vaccinated
Yet
201 39 60 141
Vaccinated with
Card
284 55 49 235 0.005 0.54 0.36 0.82
Vaccinated
without card
31 6 10 21
Total 516 100 119 397
Out of the 516 care takers interviewed, 282(54.7%) were involved in their own food production. 49
(17.38%) of the children in these homes were malnourished with p-value of 0.001 and OR 0.49 (95% C.I.
0.32-0.75) which was statistically significant. 181 (50%) of those who had produced food had cereals still
available by the time of administering questionnaire. 30 (10.64%) of the children in these group who still
had their food from last harvest were malnourished with p-value of 0.014 and OR 0.55 (95% C.I. 0.35-
0.87) which is significant (Table 16: sections 4 and 5).
Community based distributers (CBDs) were found to be within easy reach of 259 (50.2%) of the 516
care takers interviewed. 49 (18.92%) of the children with access to CBDs were malnourished with p-
value of 0.032, OR 0.62 (95% C.I. 0.41-0.94). P-value is significant and OR shows risk reduction to
malnutrition in the presence of CBDs (table16: section 6).
Multivariate analysis
Main sources of food for the 6-59 months old children were the families own produce with estimate of
282(54.7%). This was followed by market or shop at 123 (23.9%) and work for food 67 (13%).
Significant number of respondents 31 (6%) reported to have no food for the family hence resort to
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Texila International Journal of Public Health Special Edition Apr 2019
begging from relatives, friends and well-wishers both in town and villages; only 1(0.2%) reported to be
relying on food aid from the humanitarian workers. Source of food is a factor that affects the nutrition
status of children with p-value of 0.00357 and (95% confidence interval of 0.081-0.2). Those who mainly
buy from the market have the least rate of malnutrition among 6-59 months old children at 16% (20)
followed by those who produce their own food at 17 % (47). However, those who rely on food aid have
the highest rate of malnutrition at 50% (1) followed by those who work for food at 45 % (30) (table17
section 8).
The food is prepared and given to children daily, but there was wide variation in the frequency at
which the food is given. 163 (57.6%) of the children were fed once or twice in a day, 79 (15.4%) were fed
thrice a day and the remaining 139 (27%) were fed four or more times a day (fig 10). Feeding children
once or twice a day contributes to malnutrition with P-values 0.00035, 0.4058 and odds rations 2.20(95%
C.I 1.44-3.35) and 1.24 (95% C.I. 0.79-1.96) respectively. Meanwhile feeding young children 4 or more
times a day has protective significant effect against malnutrition with p-values 0.000278 and OR 0.2
(95% C.I. 0.08-0.5) (table17: section 1).
The study revealed high burden of infectious diseases at 94.5% and only 28(5.5%) of the children were
reported not to have any illness in the past two weeks prior to the study. 225 (43.7%) of the children were
reported to have suffered from a febrile illness, 130 (25.1%) from diarrhea, 104 (20.2%) from cough, 23
(4.4%) from skin infections and 6 (1.1%) were reported to have suffered from eye infections (fig8).
Children 6-59 months old who were reported to have suffered from any illness were more likely to
suffer from malnutrition than those who were not sick with p-values 0.043, and 0.040 for fever, and
diarrhea respectively. The odds ratios for fever and diarrhea were above 1(one) meaning that the
infections contributed to the malnutrition though at varying degrees for example, odds ratio (OR) for
fever was 1.56(95% C.I 1.03- 2.36) and OR for diarrhea was 1.64 (95% C.I 1.05-2.57). Cough has slight
effect on malnutrition with OR 0.93 (95% C.I 0.56-1.57) (table17: section 2).
The health seeking behavior for the parents or care takers however varied. 156(30.2%) of the
respondents sought health services from a community based distributer (CBD), 108 (20.9%) went for
treatment in a primary health care center (PHCC) or primary health care unit (PHCU). 88 (17%) of the
respondents sought health services from hospital, 23(4.4%) from private physician within Aweil town,
53(10.3%) from drug shops, 20 (3.9%) from traditional healer and 6 (1.1%) from village health worker
(table23).
Figure 8. Burden of infectious diseases among children 6-59 months in Aweil 2 weeks prior to the study
0204060
Fever Cough Diarrhoea SkinInfections
EyeInfections
Nonillness
Pe
rce
nta
ge
Morbidity
Burden of infectious diseases among children 6-59 months in
Aweil
%
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Figure 9. Coverage of key primary health care interventions for children 6-59 months in Aweil
Figure 10. Frequency of meals eaten daily by children 6-59 months in Aweil center May 2018
Table 1. Table of P-values, O.R. (95% C.I.) of different factors - multivariate analysis
VARIABLE No. % P-
VALUE
OR 95% CI
1
Frequencies of
meals eaten by
children
No. % Mal
nutritio
n
No mal
nutritio
n
P-value OR Lower
95%
Uppe
r
95%
Once 163 31.5
0
54 109 0.00035 2.20 1.44 3.35
Twice 136 26.1
0
36 100 0.40581 1.24 0.79 1.96
Three times 139 27.0
0
24 115 0.07507 0.62 0.38 1.02
Four or more times 78 15.0
0
5 73 0.00028 0.20 0.08 0.5
Total 516 99.6
0
119 398 0.47 0.040 0.02
515253545556
Vitamin Asupplimentation
Measlesvaccination
Children sleepingunder LLITN
%
PHC intervention
Coverage of key primary health care interventions for children 6-59 months in
Aweil May 2018
Coverage
once32%
Twice26%Three times
15%
Four or more times27%
Frequencies of daily meals eaten by children 6-59 months in Aweil May 2018
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Texila International Journal of Public Health Special Edition Apr 2019
2 Disease condition No. % Mal
nutritio
n
No mal
nutritio
n
P-value OR Lower
95%
Uppe
r
95%
Fever 225 43.7 62 163 0.04282 1.56 1.03 2.36
Cough 104 20.2 13 91 0.89 0.93 0.56 1.57
Diarrhea 130 25.1 39 91 0.04027 1.64 1.05 2.57
Skin Infections 23 4.4 3 20 0.36085 0.49 0.14 1.67
Eye Infections 6 1.1 1 5 0.90974 0.72 0.12 4.34
Non illness 28 5.5 2 26 0.02964 0.12 0.02 0.93
Total 516 100 119 397 0.00022 0.167 0.291
How many months did the food from last harvest season last
3
Months No. % Mal
nutritio
n
No mal
nutritio
n
P-value OR Lower
95%
Uppe
r
95%
1 to 3 30 11% 15 15 0.01939 3.18 1.29 7.81
4 to 6 50 18% 13 37 0.32 0.59 0.25 1.38
7 to 9 21 7% 4 17 0.2564 0.44 0.13 1.43
Total 101 36
%
32 69
Denominator 282- those who did agricultural
production
4
1st time breast fed No. % Mal
nutritio
n
No mal
nutritio
n
P-value OR Lower
95%
Uppe
r
95%
Immediately (<1
hr.)
98 19 8 90 0.0002 0.25 0.12 0.52
1-24 hours 387 75 98 289 0.046 1.74 1.04 2.94
24-48 hours 4 0.8 2 2 0.49133 3.38 0.47 24.23
After 48 hours 1 0.2 1 0
Don’t know 26 5 10 16
516 100 119 397 0.00015 0.192 0.286
5
Age of introducing
other foods
No. % Mal
nutritio
n
No mal
nutritio
n
P-value OR Lower
95%
Uppe
r
95%
Below 1 month 98 19 19 79 0.41 0.76 0.44 1.32
1-5 months 155 30 50 105 0.02513 1.65 1.08 2.5
6 months 206 40 38 168 0.05457 0.64 0.41 0.99
7-12 months 53 10.3 10 43 0.55311 0.76 0.37 1.55
Above 12 months 4 0.7 2 2
516 100 119 397 0.00044 0.169
4
0.289
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6
Mothers'
education level
No. % Mal
nutritio
n
No mal
nutritio
n
P-value OR Lower
95%
Uppe
r
95%
Never attended
school
397 76.9 102 295 0.01362 2.07 1.18 3.63
Primary level 98 19 10 88 0.00126 0.39 0.21 0.72
Secondary level 13 2.5 4 9 0.72440 1.52 0.46 5.02
Institution 8 1.6 3 5 0.57950 2.03 0.48 8.61
516 100 119 397 0.00035 0.203
1
0.288
7
Age of the Mother
or care taker
No. % Mal
nutritio
n
No mal
nutritio
n
P-value OR Lower
95%
Uppe
r
95%
Less than 20 166 32 49 117 0.0347 1.62 1.06 2.47
20-29 133 25.8 70 103 0.96712 0.96 0.6 1.54
30-39 144 27.9 29 115 0.38744 0.79 0.49 1.27
40-49 65 12.6 10 55 0.1573 0.57 0.28 1.16
50 and above 8 2 1 7
516 100 119 397 0.00107 0.158 0.312
Food security factors
Table 18. Individual Dietary Diversity Score (IDDS) of children who ate at least 4 types of food 24 hours prior to
the study
Age Category No. f, 4 or more food eaten IDDS (%)
(6-11) 56 7 12.5
(12-23) 131 12 9.2
(24-35) 110 30 27.3
(36-47) 109 20 18.3
(48-60) 110 15 13.6
Total 516 84 16.3
84(16.28%) mothers and care takers reported to have fed the child 4 or more types of food in 24hrs
prior to the study. This was equivalent to 16.3% individual dietary diversity score with p-value of
0.001459 (C.I, 0.104461-0.212) which was significant (Table 8).
125 (24%) of the households had consumed various food types 4-7 times 7 days prior to the day of the
questionnaire. The commonest foods consumed by the family were milk and milk products by 200
families, fish by 148 families, and fruits by 141 followed by cereals consumed by 136 families.
Meanwhile the least food consumed were tubers and roots consumed by 97 families. (Table9).
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Texila International Journal of Public Health Special Edition Apr 2019
Table 19. Number of days in past 7 days household had consumed the group of foods-household dietary diversity
score (HDDS)
Table 20. Age of siblings of children with malnutrition- Mothers with other children (n) =387
Age of other children No. % Malnutrition No malnutrition Prevalence
(0-5) 50 13% 16 34 32%
(6-11) 79 20% 30 49 38%
(12-23) 40 10% 20 20 50%
(24-35) 89 23% 12 77 13%
(36-47) 94 24% 9 85 10%
(48-60) 35 9% 5 30 14%
Total 387 100% 92 295
Table21. Main shock faced by the households in aweil center
Shocks No. % Malnutrition No malnutrition
No shocks 5 1% 0 5
Insecurity 26 5% 5 21
Expensive food 187 36% 83 104
Limited access to basic
services
13 3% 3 10
Diseases 252 49% 21 231
Floods 10 2% 2 8
Livestock diseases 3 1% 1 2
Delay of rains 5 1% 1 4
Pest/crop disease 10 2% 1 9
Lack of water 5 1% 2 3
Total 516 100% 119 397
Aweil has overwhelming number of problems with varying gravity that affect the social economic
wellbeing of the families and impact on the nutrition status of the children especially those 6-59 months
with p-value of 0.0001 (95% C.I 0.1443-0.3025) which was significant. 99% (511) mothers reported at
Food group Never 1-3times 4-7 times HDDS
Cereals 5 375 136 26%
Legumes/nuts 53 350 113 22%
Roots & tubers 39 380 97 19%
Meat/poultry 50 309 107 21%
Fish & sea food 103 272 141 27%
Milk & milk products 16 300 200 39%
Vegetables 84 320 112 22%
Fruits 108 260 148 29%
Eggs 172 240 104 20%
Oil / fats 174 226 116 22%
Sugar & honey 106 310 100 19%
Average 83 304 125 24%
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least one of the following shocks: diseases 252(49%), high cost of food 187(36%), insecurity 26(5%),
limited access to basic services 13(3%) and floods 10 (2%) among others (table10).
One of the findings is the relation between malnutrition and the age of the youngest sibling with p-
value 0.001 at (95% C.I 0.1442-0.3167). 50 (13%) of the respondents reported that there was a younger
child (1-5 months) and 79 (15%) reported younger child of 6-11 months and the rest reported siblings
older to the one who was being enrolled into the study. Generally, the younger the youngest sibling, the
greater the risk of malnutrition for the other child with the highest prevalence of malnutrition at 50%
among children 12-23 months age group and followed by 38% among 6-11% age group. The list
prevalence was 10% among the age group of 36-47% (table 11).
Table 22. Main sources of household income in Aweil
Main sources of household
income
No. % Malnutri
tion
No
malnutritio
n
%
Malnutritio
n
Sale of crops 253 49 77 170 30%
Sale of livestock 10 2 3 7 1%
Sale of animal products 5 1 1 4 20%
Sale of natural resources like local
building materials, honey, firewood
103 20 10 93 10%
Casual labor 31 6 3 28 10%
Salaried and skilled labor 41 8 2 38 6%
Small business 36 7 6 30 17%
Brewing 26 5 15 11 42%
Sale of fish 5 1 1 4 20%
Other 4 1 1 4 20%
Total 514 10
0
119 389 23%
15(3%) of the care takers sale livestock or their products like milk; majority- 253(49%) sale of crops as
their main source of income. 103 (20%) of them reported sale of natural resources like grass, poles,
firewood and honey as their main source of household income. 41(8%) of the respondents had skilled
labor with salary jobs. 31 (6%) worked as casual laborers, 36(7%) were small scale business women/men
and 26(5%) reported local brewing as their source of household income (table12).
Table 23. Health seeking behavior among the caretakers in Aweil Center
Health seeking behavior No. %
Hospital 88 17
PHCC/U 108 20.9
CBD 156 30.2
Private Physician 23 4.4
Village health worker 6 1.1
Traditional healer 20 3.9
Drug shop 53 10.3
Other 63 12.2
Total 516 100
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Discussion
The results achieved the 1st objective of assessing the prevalence of malnutrition among children 6-59
months in Aweil Center County. It showed that prevalence of global acute malnutrition - GAM rate at (<-
2 z-score and/or edema) was [119] 23.2% (95% CI, 19.0- 27.9) which was above the WHO threshold of
15%. Similarly prevalence of moderately acute malnutrition (MAM) (<-2 z-score and >=-3 z-score, no
edema) was 16.2 %( 95% CI, 14.1-18.0) (table2). This was also above the threshold of 8% for MAM
recommended by the global nutrition cluster (GNC). Prevalence of severe acute malnutrition (SAM) (% <
-3SD) was 7% (95% CI, 4.9-9.9) in Aweil which was also higher than the WHO threshold of 2%.
This finding was consistent with the results of 2017 publication of another study done by WHO staff
that showed that former northern Bahr el Ghazal state where Aweil Center is the capital had GAM rate
above the emergence threshold and was staggering at catastrophic level of 33.3 % by 2015 (Adrianopoli
M and Mpairwe A 2017). Neighboring Sudan state of North Darfur where Global Acute Malnutrition
(GAM) prevalence is at 27.9 per cent has been in conflict for over decades like South Sudan leading to
chronic underdevelopment which in turn resulted in to acute humanitarian needs (WHO 2017).
In relation to the second objective, 256(49%) of the respondents reported to have another younger
sibling to the one enrolled in the study (table11). This is an indication of too close child spacing which
gives little attention to the older child once the new baby is born hence he/she is likely to be weaned off
breast milk too early with limited nutrition options; hence risk of becoming malnourished. This practice is
however deeply rooted in the culture of South Sudanese leading to the high fertility rate of 7.1 children
per woman (Hilde H. H. 2017).
The study revealed high burden of infectious diseases at 94.5% with p-value 0.00022 (95% C.I,
0.1667-0.291) and only 28(5.5%) of the children were reported not to have any illness in the past two
weeks prior to the study as indicated in objective three of the study. 225 (43.7%) of the children were
reported to have suffered from a febrile illness. These findings are consistent with that of WHO published
in July 2018 which showed malaria (commonest cause of febrile illness) as the leading cause of morbidity
accounting for 63% of the consultations.
The relationship between diarrhea and malnutrition is bidirectional: diarrhea leads to malnutrition and
if chronic, can lead to stunting by 25-30% while malnutrition aggravates the diarrhea especially in
children (Visser J, Blaauw R, and Labadarios D 2010).
Prevalence of stunting based on height/length-for-age z-scores was 8.7% (95% CI, 6.5- 11.6).
Comparing the rate of stunting with the history of chronic malnutrition, the prevalence of stunting is
much lower than expected most likely due to the associated genetic factors that the population of this
pastoral community are genetically tall people.
163 (57.6%) of the children were fed once or twice in a day, 79 (15.4%) were fed thrice a day and the
remaining 139 (27%) were fed four or more times a day with individual dietary diversity score of 16.3%
with p-value of 0.001459 (C.I, 0.104461-0.212) which was significant (fig 10 and table 8). To provide
food once or twice a day for young children with high metabolic rate can lead to malnutrition. This partly
explains the chronic malnutrition in Aweil that has persisted in years. The community may not be aware
that children need more frequent feeding than adults to prevent malnutrition.
Main sources of food for the 6-59 months old children were, the families own produce with estimate of
282(54.7%). This was followed by market or shop at 123 (23.9%) and work for food 67 (13%).
Significant number of respondents 31 (6%) reported to have no food for the family hence resort to
begging from relatives, friends and well-wishers both in town and villages; only 1(0.2%) reported to be
relying on food aid from the humanitarian workers(table12). This partly reflects the inaccessibility of the
remote areas by the aid workers for food aid. In South East Asia it is shown that the production of
targeted nutrition-rich crops, homestead gardens, and diversification of the agricultural production system
towards fruits and vegetables and aquaculture potentially improves nutrient intake and nutritional
outcomes (Pandey L.V, Mahendra D. S, and Jayachandran U 2016).
Vitamin A supplementation for children 6-59 months was 273(53%) which is low coverage though
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answers objective four of the study. Vitamin A deficiency (serum retinol 0.70 µmol/l or lower) is 20% in
infants and children 6–59 months of age which need to be corrected through Vitamin A supplementation
(WHO 2018) (fig9).
Measles vaccination with evidence from a vaccination card was only 284 (55%). This is poor measles
coverage that cannot provide hard immunity to the children in the community. At least 95% coverage is
needed to attain hard immunity.
273 (53%) of the children were reported to be sleeping under long lasting insecticide treated mosquito
nets. With high prevalence of infectious diseases over 40% of which were fever, preventive measures like
LLITN mass distribution and proper use need to be promoted (figure 9).
Limitations of the study
I. The study didn’t consider the residence status of the households or children whether some of
them were IDPs from the neighboring states where there is conflict that could be more vulnerable
to malnutrition than the host community.
II. This study was cross-sectional done in May; hence it does not reflect the seasonal variation of
malnutrition during the pre-harvest, harvest and hanger gaps.
Conclusion
This study confirms the prevalence of malnutrition among children that remains chronically high above
the WHO’s threshold of 15% in Aweil center and situation is worse by poor family planning, high burden
of infectious diseases, dependency syndrome on inadequate food aid in the villages where the
accessibility for basic services is hampered by flooding during the rainy season which calls for
infrastructure development at the Payam level to increase accessibility to basic services.
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